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Automated Disassembly Sequence Prediction for Industry 4.0 Using Enhanced Genetic Algorithm
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作者 Anil Kumar Gulivindala M.V.A.Raju Bahubalendruni +3 位作者 R.Chandrasekar Ejaz Ahmed Mustufa Haider Abidi abdulrahman al-ahmari 《Computers, Materials & Continua》 SCIE EI 2021年第11期2531-2548,共18页
The evolution of Industry 4.0 made it essential to adopt the Internet of Things(IoT)and Cloud Computing(CC)technologies to perform activities in the new age of manufacturing.These technologies enable collecting,storin... The evolution of Industry 4.0 made it essential to adopt the Internet of Things(IoT)and Cloud Computing(CC)technologies to perform activities in the new age of manufacturing.These technologies enable collecting,storing,and retrieving essential information from the manufacturing stage.Data collected at sites are shared with others where execution automatedly occurs.The obtained information must be validated at manufacturing to avoid undesirable data losses during the de-manufacturing process.However,information sharing from the assembly level at the manufacturing stage to disassembly at the product end-of-life state is a major concern.The current research validates the information optimally to offer a minimum set of activities to complete the disassembly process.An optimal disassembly sequence plan(DSP)can possess valid information to organize the necessary actions in manufacturing.However,finding an optimal DSP is complex because of its combinatorial nature.The genetic algorithm(GA)is a widely preferred artificial intelligence(AI)algorithm to obtain a near-optimal solution for the DSP problem.The converging nature at local optima is a limitation in the traditional GA.This study improvised the GA workability by integrating with the proposed priori crossover operator.An optimality function is defined to reduce disassembly effort by considering directional changes as parameters.The enhanced GA method is tested on a real-time product to evaluate the performance.The obtained results reveal that diversity control depends on the operators employed in the disassembly attributes.The proposed method’s solution can be stored in the cloud and shared through IoT devices for effective resource allocation and disassembly for maximum recovery of the product.The effectiveness of the proposed enhanced GA method is determined by making a comparative assessment with traditional GA and other AI methods at different population sizes. 展开更多
关键词 AUTOMATION internet of things disassembly sequence planning priori cross over operator enhanced GA disassembly predicates
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基于有限元和光滑粒子流体动力学的硬质工具钢切屑形貌预测方法研究(英文)
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作者 Usama UMER Jaber Abu QUDEIRI +1 位作者 Mohammad ASHFAQ abdulrahman al-ahmari 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2016年第11期873-885,共13页
目的:获得有效的高精度切屑形貌仿真方法。创新点:通过比较不同切削参数下采用光滑粒子流体动力学模型和有限元模型仿真获得的切屑形貌,证明光滑粒子流体动力学模型可以很好地实现对节状切屑的仿真,而不需要额外的几何或基于网格的切屑... 目的:获得有效的高精度切屑形貌仿真方法。创新点:通过比较不同切削参数下采用光滑粒子流体动力学模型和有限元模型仿真获得的切屑形貌,证明光滑粒子流体动力学模型可以很好地实现对节状切屑的仿真,而不需要额外的几何或基于网格的切屑分离准则。方法:基于有限元和光滑粒子流体动力学的切削形貌仿真方法。结论:通过比较不同切削参数下采用光滑粒子流体动力学模型和有限元模型仿真获得的切屑形貌,证明了基于裂纹形成与扩展理论,采用合理疲劳参数的标准Johnson-Cook模型完全可以实现对节状切屑形成过程的仿真,也即无需采用修正的Johnson-Cook模型。同时证明了有限元模型和光滑粒子流体动力学方法均可满足不同切削速度和进给量条件下的切削力和切屑形貌仿真。 展开更多
关键词 切屑形貌 有限元 光滑粒子流体动力学 淬硬工具钢 锯齿形切屑
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